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SORT: a fast and compact neural classifier based on a sorting preprocessor

机译:排序:基于排序预处理器的快速和紧凑的神经分类器

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This paper proposes a compact neural classifier, based on the theory of simplicial decomposition and approximation, with a very convenient hardware or software implementation. It can learn arbitrary n-inputs patterns with O(n) time complexity. There are no multipliers required, and the learned knowledge is stored in a general purpose RAM with a size ranging from O(n) to O(n/sup 2/). The proposed architecture is composed only of three building blocks, a sorter, a RAM memory and an accumulator, all of them readily available in either digital hardware or software technology. Simulation results indicate good accuracy for a wide variety of benchmark problems.
机译:本文提出了一种紧凑的神经分类器,基于简体分解和近似的理论,具有非常方便的硬件或软件实现。它可以学习具有O(n)时间复杂度的任意n输入模式。不需要乘数,并且学习知识存储在通用RAM中,大小范围从O(n)到O(n / sup 2 /)。所提出的体系结构仅由三个构建块,分拣机,RAM内存和累加器组成,所有这些都可以在数字硬件或软件技术中容易地提供。仿真结果表明各种基准问题的良好准确性。

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